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[/] [neorv32/] [trunk/] [sw/] [example/] [coremark/] [core_matrix.c] - Blame information for rev 65

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1 2 zero_gravi
/*
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Copyright 2018 Embedded Microprocessor Benchmark Consortium (EEMBC)
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Licensed under the Apache License, Version 2.0 (the "License");
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you may not use this file except in compliance with the License.
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You may obtain a copy of the License at
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    http://www.apache.org/licenses/LICENSE-2.0
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Unless required by applicable law or agreed to in writing, software
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distributed under the License is distributed on an "AS IS" BASIS,
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WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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See the License for the specific language governing permissions and
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limitations under the License.
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Original Author: Shay Gal-on
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*/
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#include "coremark.h"
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/*
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Topic: Description
22 38 zero_gravi
        Matrix manipulation benchmark
23 2 zero_gravi
 
24 38 zero_gravi
        This very simple algorithm forms the basis of many more complex
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algorithms.
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        The tight inner loop is the focus of many optimizations (compiler as
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well as hardware based) and is thus relevant for embedded processing.
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        The total available data space will be divided to 3 parts:
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        NxN Matrix A - initialized with small values (upper 3/4 of the bits all
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zero). NxN Matrix B - initialized with medium values (upper half of the bits all
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zero). NxN Matrix C - used for the result.
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        The actual values for A and B must be derived based on input that is not
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available at compile time.
37 2 zero_gravi
*/
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ee_s16 matrix_test(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B, MATDAT val);
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ee_s16 matrix_sum(ee_u32 N, MATRES *C, MATDAT clipval);
40 38 zero_gravi
void   matrix_mul_const(ee_u32 N, MATRES *C, MATDAT *A, MATDAT val);
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void   matrix_mul_vect(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B);
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void   matrix_mul_matrix(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B);
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void   matrix_mul_matrix_bitextract(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B);
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void   matrix_add_const(ee_u32 N, MATDAT *A, MATDAT val);
45 2 zero_gravi
 
46 38 zero_gravi
#define matrix_test_next(x)      (x + 1)
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#define matrix_clip(x, y)        ((y) ? (x)&0x0ff : (x)&0x0ffff)
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#define matrix_big(x)            (0xf000 | (x))
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#define bit_extract(x, from, to) (((x) >> (from)) & (~(0xffffffff << (to))))
50 2 zero_gravi
 
51
#if CORE_DEBUG
52 38 zero_gravi
void
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printmat(MATDAT *A, ee_u32 N, char *name)
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{
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    ee_u32 i, j;
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    ee_printf("Matrix %s [%dx%d]:\n", name, N, N);
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    for (i = 0; i < N; i++)
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    {
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        for (j = 0; j < N; j++)
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        {
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            if (j != 0)
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                ee_printf(",");
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            ee_printf("%d", A[i * N + j]);
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        }
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        ee_printf("\n");
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    }
67 2 zero_gravi
}
68 38 zero_gravi
void
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printmatC(MATRES *C, ee_u32 N, char *name)
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{
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    ee_u32 i, j;
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    ee_printf("Matrix %s [%dx%d]:\n", name, N, N);
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    for (i = 0; i < N; i++)
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    {
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        for (j = 0; j < N; j++)
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        {
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            if (j != 0)
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                ee_printf(",");
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            ee_printf("%d", C[i * N + j]);
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        }
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        ee_printf("\n");
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    }
83 2 zero_gravi
}
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#endif
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/* Function: core_bench_matrix
86 38 zero_gravi
        Benchmark function
87 2 zero_gravi
 
88 38 zero_gravi
        Iterate <matrix_test> N times,
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        changing the matrix values slightly by a constant amount each time.
90 2 zero_gravi
*/
91 38 zero_gravi
ee_u16
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core_bench_matrix(mat_params *p, ee_s16 seed, ee_u16 crc)
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{
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    ee_u32  N   = p->N;
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    MATRES *C   = p->C;
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    MATDAT *A   = p->A;
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    MATDAT *B   = p->B;
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    MATDAT  val = (MATDAT)seed;
99 2 zero_gravi
 
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    crc = crc16(matrix_test(N, C, A, B, val), crc);
101 2 zero_gravi
 
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    return crc;
103 2 zero_gravi
}
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105
/* Function: matrix_test
106 38 zero_gravi
        Perform matrix manipulation.
107 2 zero_gravi
 
108 38 zero_gravi
        Parameters:
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        N - Dimensions of the matrix.
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        C - memory for result matrix.
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        A - input matrix
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        B - operator matrix (not changed during operations)
113 2 zero_gravi
 
114 38 zero_gravi
        Returns:
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        A CRC value that captures all results calculated in the function.
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        In particular, crc of the value calculated on the result matrix
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        after each step by <matrix_sum>.
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119 38 zero_gravi
        Operation:
120 2 zero_gravi
 
121 38 zero_gravi
        1 - Add a constant value to all elements of a matrix.
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        2 - Multiply a matrix by a constant.
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        3 - Multiply a matrix by a vector.
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        4 - Multiply a matrix by a matrix.
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        5 - Add a constant value to all elements of a matrix.
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127
        After the last step, matrix A is back to original contents.
128 2 zero_gravi
*/
129 38 zero_gravi
ee_s16
130
matrix_test(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B, MATDAT val)
131
{
132
    ee_u16 crc     = 0;
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    MATDAT clipval = matrix_big(val);
134 2 zero_gravi
 
135 38 zero_gravi
    matrix_add_const(N, A, val); /* make sure data changes  */
136 2 zero_gravi
#if CORE_DEBUG
137 38 zero_gravi
    printmat(A, N, "matrix_add_const");
138 2 zero_gravi
#endif
139 38 zero_gravi
    matrix_mul_const(N, C, A, val);
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    crc = crc16(matrix_sum(N, C, clipval), crc);
141 2 zero_gravi
#if CORE_DEBUG
142 38 zero_gravi
    printmatC(C, N, "matrix_mul_const");
143 2 zero_gravi
#endif
144 38 zero_gravi
    matrix_mul_vect(N, C, A, B);
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    crc = crc16(matrix_sum(N, C, clipval), crc);
146 2 zero_gravi
#if CORE_DEBUG
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    printmatC(C, N, "matrix_mul_vect");
148 2 zero_gravi
#endif
149 38 zero_gravi
    matrix_mul_matrix(N, C, A, B);
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    crc = crc16(matrix_sum(N, C, clipval), crc);
151 2 zero_gravi
#if CORE_DEBUG
152 38 zero_gravi
    printmatC(C, N, "matrix_mul_matrix");
153 2 zero_gravi
#endif
154 38 zero_gravi
    matrix_mul_matrix_bitextract(N, C, A, B);
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    crc = crc16(matrix_sum(N, C, clipval), crc);
156 2 zero_gravi
#if CORE_DEBUG
157 38 zero_gravi
    printmatC(C, N, "matrix_mul_matrix_bitextract");
158 2 zero_gravi
#endif
159 38 zero_gravi
 
160
    matrix_add_const(N, A, -val); /* return matrix to initial value */
161
    return crc;
162 2 zero_gravi
}
163
 
164
/* Function : matrix_init
165 38 zero_gravi
        Initialize the memory block for matrix benchmarking.
166 2 zero_gravi
 
167 38 zero_gravi
        Parameters:
168
        blksize - Size of memory to be initialized.
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        memblk - Pointer to memory block.
170
        seed - Actual values chosen depend on the seed parameter.
171
        p - pointers to <mat_params> containing initialized matrixes.
172 2 zero_gravi
 
173 38 zero_gravi
        Returns:
174
        Matrix dimensions.
175
 
176
        Note:
177
        The seed parameter MUST be supplied from a source that cannot be
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   determined at compile time
179 2 zero_gravi
*/
180 38 zero_gravi
ee_u32
181
core_init_matrix(ee_u32 blksize, void *memblk, ee_s32 seed, mat_params *p)
182
{
183
    ee_u32  N = 0;
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    MATDAT *A;
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    MATDAT *B;
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    ee_s32  order = 1;
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    MATDAT  val;
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    ee_u32  i = 0, j = 0;
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    if (seed == 0)
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        seed = 1;
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    while (j < blksize)
192
    {
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        i++;
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        j = i * i * 2 * 4;
195
    }
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    N = i - 1;
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    A = (MATDAT *)align_mem(memblk);
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    B = A + N * N;
199 2 zero_gravi
 
200 38 zero_gravi
    for (i = 0; i < N; i++)
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    {
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        for (j = 0; j < N; j++)
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        {
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            seed         = ((order * seed) % 65536);
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            val          = (seed + order);
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            val          = matrix_clip(val, 0);
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            B[i * N + j] = val;
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            val          = (val + order);
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            val          = matrix_clip(val, 1);
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            A[i * N + j] = val;
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            order++;
212
        }
213
    }
214 2 zero_gravi
 
215 38 zero_gravi
    p->A = A;
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    p->B = B;
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    p->C = (MATRES *)align_mem(B + N * N);
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    p->N = N;
219 2 zero_gravi
#if CORE_DEBUG
220 38 zero_gravi
    printmat(A, N, "A");
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    printmat(B, N, "B");
222 2 zero_gravi
#endif
223 38 zero_gravi
    return N;
224 2 zero_gravi
}
225
 
226
/* Function: matrix_sum
227 38 zero_gravi
        Calculate a function that depends on the values of elements in the
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   matrix.
229 2 zero_gravi
 
230 38 zero_gravi
        For each element, accumulate into a temporary variable.
231
 
232
        As long as this value is under the parameter clipval,
233
        add 1 to the result if the element is bigger then the previous.
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235
        Otherwise, reset the accumulator and add 10 to the result.
236 2 zero_gravi
*/
237 38 zero_gravi
ee_s16
238
matrix_sum(ee_u32 N, MATRES *C, MATDAT clipval)
239
{
240
    MATRES tmp = 0, prev = 0, cur = 0;
241
    ee_s16 ret = 0;
242
    ee_u32 i, j;
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    for (i = 0; i < N; i++)
244
    {
245
        for (j = 0; j < N; j++)
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        {
247
            cur = C[i * N + j];
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            tmp += cur;
249
            if (tmp > clipval)
250
            {
251
                ret += 10;
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                tmp = 0;
253
            }
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            else
255
            {
256
                ret += (cur > prev) ? 1 : 0;
257
            }
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            prev = cur;
259
        }
260
    }
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    return ret;
262 2 zero_gravi
}
263
 
264
/* Function: matrix_mul_const
265 38 zero_gravi
        Multiply a matrix by a constant.
266
        This could be used as a scaler for instance.
267 2 zero_gravi
*/
268 38 zero_gravi
void
269
matrix_mul_const(ee_u32 N, MATRES *C, MATDAT *A, MATDAT val)
270
{
271
    ee_u32 i, j;
272
    for (i = 0; i < N; i++)
273
    {
274
        for (j = 0; j < N; j++)
275
        {
276
            C[i * N + j] = (MATRES)A[i * N + j] * (MATRES)val;
277
        }
278
    }
279 2 zero_gravi
}
280
 
281
/* Function: matrix_add_const
282 38 zero_gravi
        Add a constant value to all elements of a matrix.
283 2 zero_gravi
*/
284 38 zero_gravi
void
285
matrix_add_const(ee_u32 N, MATDAT *A, MATDAT val)
286
{
287
    ee_u32 i, j;
288
    for (i = 0; i < N; i++)
289
    {
290
        for (j = 0; j < N; j++)
291
        {
292
            A[i * N + j] += val;
293
        }
294
    }
295 2 zero_gravi
}
296
 
297
/* Function: matrix_mul_vect
298 38 zero_gravi
        Multiply a matrix by a vector.
299
        This is common in many simple filters (e.g. fir where a vector of
300
   coefficients is applied to the matrix.)
301 2 zero_gravi
*/
302 38 zero_gravi
void
303
matrix_mul_vect(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B)
304
{
305
    ee_u32 i, j;
306
    for (i = 0; i < N; i++)
307
    {
308
        C[i] = 0;
309
        for (j = 0; j < N; j++)
310
        {
311
            C[i] += (MATRES)A[i * N + j] * (MATRES)B[j];
312
        }
313
    }
314 2 zero_gravi
}
315
 
316
/* Function: matrix_mul_matrix
317 38 zero_gravi
        Multiply a matrix by a matrix.
318
        Basic code is used in many algorithms, mostly with minor changes such as
319
   scaling.
320 2 zero_gravi
*/
321 38 zero_gravi
void
322
matrix_mul_matrix(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B)
323
{
324
    ee_u32 i, j, k;
325
    for (i = 0; i < N; i++)
326
    {
327
        for (j = 0; j < N; j++)
328
        {
329
            C[i * N + j] = 0;
330
            for (k = 0; k < N; k++)
331
            {
332
                C[i * N + j] += (MATRES)A[i * N + k] * (MATRES)B[k * N + j];
333
            }
334
        }
335
    }
336 2 zero_gravi
}
337
 
338
/* Function: matrix_mul_matrix_bitextract
339 38 zero_gravi
        Multiply a matrix by a matrix, and extract some bits from the result.
340
        Basic code is used in many algorithms, mostly with minor changes such as
341
   scaling.
342 2 zero_gravi
*/
343 38 zero_gravi
void
344
matrix_mul_matrix_bitextract(ee_u32 N, MATRES *C, MATDAT *A, MATDAT *B)
345
{
346
    ee_u32 i, j, k;
347
    for (i = 0; i < N; i++)
348
    {
349
        for (j = 0; j < N; j++)
350
        {
351
            C[i * N + j] = 0;
352
            for (k = 0; k < N; k++)
353
            {
354
                MATRES tmp = (MATRES)A[i * N + k] * (MATRES)B[k * N + j];
355
                C[i * N + j] += bit_extract(tmp, 2, 4) * bit_extract(tmp, 5, 7);
356
            }
357
        }
358
    }
359 2 zero_gravi
}

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